Burroni Marco, Corona Rosamaria, Dell'Eva Giordana, Sera Francesco, Bono Riccardo, Puddu Pietro, Perotti Roberto, Nobile Franco, Andreassi Lucio, Rubegni Pietro
Department of Dermatology, University of Siena, Italy.
Clin Cancer Res. 2004 Mar 15;10(6):1881-6. doi: 10.1158/1078-0432.ccr-03-0039.
Differential diagnosis of melanoma from melanocytic nevi is often not straightforward. Thus, a growing interest has developed in the last decade in the automated analysis of digitized images obtained by epiluminescence microscopy techniques to assist clinicians in differentiating early melanoma from benign skin lesions.
The aim of this study was to evaluate diagnostic accuracy provided by different statistical classifiers on a large set of pigmented skin lesions grabbed by four digital analyzers located in two different dermatological units.
Images of 391 melanomas and 449 melanocytic nevi were included in the study. A linear classifier was built by using the method of receiver operating characteristic curves to identify a threshold value for a fixed sensitivity of 95%. A K-nearest-neighbor classifier, a nonparametric method of pattern recognition, was constructed using all available image features and trained for a sensitivity of 98% on a large exemplar set of lesions.
On independent test sets of lesions, the linear classifier and the K-nearest-neighbor classifier produced a mean sensitivity of 95% and 98% and a mean specificity of 78% and of 79%, respectively.
In conclusion, our study suggests that computer-aided differentiation of melanoma from benign pigmented lesions obtained with DB-Mips is feasible and, above all, reliable. In fact, the same instrumentations used in different units provided similar diagnostic accuracy. Whether this would improve early diagnosis of melanoma and/or reducing unnecessary surgery needs to be demonstrated by a randomized clinical trial.
黑色素瘤与黑素细胞痣的鉴别诊断往往并非易事。因此,在过去十年中,人们对通过落射荧光显微镜技术获取的数字化图像进行自动分析的兴趣日益浓厚,以协助临床医生区分早期黑色素瘤与良性皮肤病变。
本研究的目的是评估不同统计分类器对来自两个不同皮肤科单位的四台数字分析仪采集的大量色素沉着性皮肤病变的诊断准确性。
本研究纳入了391例黑色素瘤和449例黑素细胞痣的图像。通过使用受试者操作特征曲线方法构建线性分类器,以确定固定敏感度为95%时的阈值。使用所有可用图像特征构建K近邻分类器(一种非参数模式识别方法),并在大量典型病变集上训练使其敏感度达到98%。
在独立的病变测试集上,线性分类器和K近邻分类器的平均敏感度分别为95%和98%,平均特异度分别为78%和79%。
总之,我们的研究表明,通过DB-Mips获得的黑色素瘤与良性色素沉着性病变的计算机辅助鉴别是可行的,最重要的是可靠的。事实上,不同单位使用的相同仪器提供了相似的诊断准确性。这是否会改善黑色素瘤的早期诊断和/或减少不必要的手术,需要通过随机临床试验来证明。